圆锥角膜
人气
叙述性评论
计算机科学
亚临床感染
验光服务
人工智能
医学
心理学
眼科
角膜
重症监护医学
病理
社会心理学
作者
Sana Niazi,Marta Jiménez‐García,Oliver Findl,Zisis Gatzioufas,Farideh Doroodgar,Mohammad Hasan Shahriari,Mohammad Ali Javadi
出处
期刊:Diagnostics
[MDPI AG]
日期:2023-08-21
卷期号:13 (16): 2715-2715
被引量:21
标识
DOI:10.3390/diagnostics13162715
摘要
The remarkable recent advances in managing keratoconus, the most common corneal ectasia, encouraged researchers to conduct further studies on the disease. Despite the abundance of information about keratoconus, debates persist regarding the detection of mild cases. Early detection plays a crucial role in facilitating less invasive treatments. This review encompasses corneal data ranging from the basic sciences to the application of artificial intelligence in keratoconus patients. Diagnostic systems utilize automated decision trees, support vector machines, and various types of neural networks, incorporating input from various corneal imaging equipment. Although the integration of artificial intelligence techniques into corneal imaging devices may take time, their popularity in clinical practice is increasing. Most of the studies reviewed herein demonstrate a high discriminatory power between normal and keratoconus cases, with a relatively lower discriminatory power for subclinical keratoconus.
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